Gonzalez Alejandro, Nambu Isao, Hokari Haruhide, Wada Yasuhiro
Department of Electrical Engineering, Nagaoka University of Technology, 1603-1 Kamitomioka, Nagaoka, Niigata 940-2188, Japan.
ScientificWorldJournal. 2014;2014:350270. doi: 10.1155/2014/350270. Epub 2014 Mar 25.
Brain-machine interfaces (BMI) rely on the accurate classification of event-related potentials (ERPs) and their performance greatly depends on the appropriate selection of classifier parameters and features from dense-array electroencephalography (EEG) signals. Moreover, in order to achieve a portable and more compact BMI for practical applications, it is also desirable to use a system capable of accurate classification using information from as few EEG channels as possible. In the present work, we propose a method for classifying P300 ERPs using a combination of Fisher Discriminant Analysis (FDA) and a multiobjective hybrid real-binary Particle Swarm Optimization (MHPSO) algorithm. Specifically, the algorithm searches for the set of EEG channels and classifier parameters that simultaneously maximize the classification accuracy and minimize the number of used channels. The performance of the method is assessed through offline analyses on datasets of auditory ERPs from sound discrimination experiments. The proposed method achieved a higher classification accuracy than that achieved by traditional methods while also using fewer channels. It was also found that the number of channels used for classification can be significantly reduced without greatly compromising the classification accuracy.
脑机接口(BMI)依赖于对事件相关电位(ERP)的准确分类,其性能在很大程度上取决于从密集阵列脑电图(EEG)信号中对分类器参数和特征的恰当选择。此外,为了实现适用于实际应用的便携式且更紧凑的BMI,还期望使用一种能够利用尽可能少的EEG通道信息进行准确分类的系统。在当前工作中,我们提出了一种结合Fisher判别分析(FDA)和多目标混合实二进制粒子群优化(MHPSO)算法对P300 ERP进行分类的方法。具体而言,该算法搜索EEG通道集和分类器参数,以同时最大化分类准确率并最小化所使用通道的数量。通过对声音辨别实验的听觉ERP数据集进行离线分析来评估该方法的性能。所提出的方法比传统方法实现了更高的分类准确率,同时使用的通道也更少。还发现用于分类的通道数量可以显著减少,而不会大幅降低分类准确率。